University of Michigan, Ann Arbor.
U.S. Army TARDEC, Warren, Michigan.
Hum Factors. 2018 Aug;60(5):669-684. doi: 10.1177/0018720818769260. Epub 2018 Apr 17.
This paper presents a behavioral model representing the human steering performance in teleoperated unmanned ground vehicles (UGVs).
Human steering performance in teleoperation is considerably different from the performance in regular onboard driving situations due to significant communication delays in teleoperation systems and limited information human teleoperators receive from the vehicle sensory system. Mathematical models capturing the teleoperation performance are a key to making the development and evaluation of teleoperated UGV technologies fully simulation based and thus more rapid and cost-effective. However, driver models developed for the typical onboard driving case do not readily address this need.
To fill the gap, this paper adopts a cognitive model that was originally developed for a typical highway driving scenario and develops a tuning strategy that adjusts the model parameters in the absence of human data to reflect the effect of various latencies and UGV speeds on driver performance in a teleoperated path-following task.
Based on data collected from a human subject test study, it is shown that the tuned model can predict both the trend of changes in driver performance for different driving conditions and the best steering performance of human subjects in all driving conditions considered.
The proposed model with the tuning strategy has a satisfactory performance in predicting human steering behavior in the task of teleoperated path following of UGVs.
The established model is a suited candidate to be used in place of human drivers for simulation-based studies of UGV mobility in teleoperation systems.
本文提出了一个行为模型,用于表示远程操控无人地面车辆(UGV)中的人类转向性能。
由于远程操作系统中的显著通信延迟以及人类远程操作员从车辆感测系统接收到的有限信息,人类在远程操作中的转向性能与常规的车载驾驶情况有很大的不同。捕捉远程操作性能的数学模型是使远程操控 UGV 技术的开发和评估完全基于仿真的关键,从而更加快速和经济高效。然而,为典型的车载驾驶情况开发的驾驶员模型并不能很好地满足这一需求。
为了填补这一空白,本文采用了最初为典型高速公路驾驶场景开发的认知模型,并开发了一种调整策略,该策略在没有人类数据的情况下调整模型参数,以反映各种延迟和 UGV 速度对人类在远程路径跟踪任务中的性能的影响。
基于从人类受试者测试研究中收集的数据,结果表明,调整后的模型可以预测不同驾驶条件下驾驶员性能变化的趋势,以及所有考虑的驾驶条件下人类受试者的最佳转向性能。
所提出的具有调整策略的模型在预测 UGV 远程路径跟踪任务中的人类转向行为方面表现出令人满意的性能。
所建立的模型是替代人类驾驶员进行远程操作系统中 UGV 移动性仿真研究的合适候选者。